Penerapan Artificial Intelligence dalam Mendeteksi Batu Ginjal secara Otomatis pada Citra CT Scan

Nanang Sulaksono, Ary Kurniawati
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Abstract

Background: Kidney stones are a clinical condition with the presence of stones along the urinary tract of varying sizes. The aim of this research is the need for a system to automatically detect kidney stones so that it can help radiologists in diagnosing kidney stones accurately, effectively and efficiently, and patients can immediately undergo further action to cure kidney stones.Methods: The difference in research carried out by researchers is the use of artificial intelligence which uses deep learning with a convolutional neural network (CNN) algorithm. This research uses images obtained from CT scan results from public data (Kaggle) and primary hospital data. The number of images used in the Augmentation training data was 2338 normal images and 2390 kidney stone images. The augmentation testing data used 540 normal images and 446 kidney stone images. The research also involved experts, namely radiology specialists, in determining images with abnormal and normal stone tones.Results: research obtained from CT Scan images of kidney stones with augmentation and original using public data/Kaggle images, obtained using augmentation obtained a high accuracy value of 99.69%. Meanwhile, in testing data using primary/hospital data images, augmented data obtained accuracy values that were still low at 45.43% and 45.23%, respectively.Conclusions: The use of deep learning with the CNN model in training data augmentation obtained high accuracy values, however in testing data using hospital CT scan images the accuracy value was still low, but it was able to recognize images of kidney stones, so it could help in automatically diagnosing kidney stones. For future work could involve refining the model to handle variations in hospital data or exploring additional features to improve generalizability.
人工智能在 CT 扫描图像自动检测肾结石中的应用
背景:肾结石是一种沿泌尿道出现大小不等结石的临床症状。这项研究的目的是需要一个自动检测肾结石的系统,以便帮助放射科医生准确、有效、高效地诊断肾结石,并让患者立即采取进一步措施治疗肾结石:研究人员进行的研究的不同之处在于使用了人工智能,即利用卷积神经网络(CNN)算法进行深度学习。本研究使用从公共数据(Kaggle)和主要医院数据中获取的 CT 扫描结果图像。增强训练数据中使用的图像数量为 2338 张正常图像和 2390 张肾结石图像。增强测试数据使用了 540 张正常图像和 446 张肾结石图像。研究还让专家(即放射科专家)参与了确定异常和正常结石色调图像的工作。结果:研究从使用增强技术的肾结石 CT 扫描图像和使用公共数据/Kaggle 图像的原始图像中获得,使用增强技术获得的准确率高达 99.69%。同时,在使用原始数据/医院数据图像的测试数据中,增强数据获得的准确率值仍然较低,分别为 45.43% 和 45.23%:在训练数据扩增中使用深度学习与 CNN 模型获得了较高的准确度值,但在使用医院 CT 扫描图像的测试数据中,准确度值仍然较低,但它能够识别肾结石图像,因此有助于自动诊断肾结石。未来的工作可能包括改进模型以处理医院数据的变化,或探索其他特征以提高通用性。
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